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Neural Feedback Passivity of Unknown Nonlinear Systems via Sliding Mode Technique

机译:滑模技术在未知非线性系统中的神经反馈无源性

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摘要

Passivity method is very effective to analyze large-scale nonlinear systems with strong nonlinearities. However, when most parts of the nonlinear system are unknown, the published neural passivity methods are not suitable for feedback stability. In this brief, we propose a novel sliding mode learning algorithm and sliding mode feedback passivity control. We prove that for a wide class of unknown nonlinear systems, this neural sliding mode control can passify and stabilize them. This passivity method is validated with a simulation and real experiment tests.
机译:无源方法对于分析具有强非线性的大型非线性系统非常有效。但是,当非线性系统的大多数部分未知时,已发布的神经无源方法不适合反馈稳定性。在本文中,我们提出了一种新颖的滑模学习算法和滑模反馈无源控制。我们证明,对于许多未知的非线性系统,这种神经滑模控制可以使它们钝化并稳定它们。这种无源方法已通过仿真和实际实验测试得到验证。

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